The prediction and control of passenger flow in scenic spots is very important to the traffic management and safety of scenic spots. This study aims to predict the passenger flow of a scenic spot based on the passenger flow of the bus and subway stations around the scenic spots. We propose a passenger flow prediction model based on graph convolutional network–recurrent neural network (GCN–RNN). First, a “graph” is constructed according to the geographical relationship between the scenic spot and the surrounding bus and subway stations. Then, characteristics of surrounding areas of bus and subway stations are constructed based on the crowd behavior analysis, and these are then used as the node-information of the “graph”. Last, the GCN–RNN mo...
Short-term traffic demand prediction is one of the crucial issues in intelligent transport systems, ...
Crowd flow prediction is of great importance in a wide range of applications from urban planning, tr...
The last years have witnessed a significant growth of human mobility studies, motivated by their imp...
Open public places, such as pedestrian streets, parks, and squares, are vulnerable when the pedestri...
Traffic flow prediction is an integral part of an intelligent transportation system and thus fundame...
Predicting the passenger flow of metro networks is of great importance for traffic management and pu...
Passenger flow prediction is important for the operation, management, efficiency, and reliability of...
Buses, as the most commonly used public transport, play a significant role in cities. Predicting bus...
As an important part of a smart city, intelligent transport can effectively reduce energy consumptio...
Currently, deep learning has been successfully applied in many fields and achieved amazing results. ...
For the fixed tourist routes in the scenic spot, the longer the journey is, the slower the speed is,...
Short-term forecasting of passenger flow is critical for transit management and crowd regulation. Sp...
Predicting short-term passenger flow accurately is of great significance for daily management and fo...
The primary objective of this study is to predict the short-term metro passenger flow using the prop...
In recent years, the rapid economic development of China, the increase of the urban population, the ...
Short-term traffic demand prediction is one of the crucial issues in intelligent transport systems, ...
Crowd flow prediction is of great importance in a wide range of applications from urban planning, tr...
The last years have witnessed a significant growth of human mobility studies, motivated by their imp...
Open public places, such as pedestrian streets, parks, and squares, are vulnerable when the pedestri...
Traffic flow prediction is an integral part of an intelligent transportation system and thus fundame...
Predicting the passenger flow of metro networks is of great importance for traffic management and pu...
Passenger flow prediction is important for the operation, management, efficiency, and reliability of...
Buses, as the most commonly used public transport, play a significant role in cities. Predicting bus...
As an important part of a smart city, intelligent transport can effectively reduce energy consumptio...
Currently, deep learning has been successfully applied in many fields and achieved amazing results. ...
For the fixed tourist routes in the scenic spot, the longer the journey is, the slower the speed is,...
Short-term forecasting of passenger flow is critical for transit management and crowd regulation. Sp...
Predicting short-term passenger flow accurately is of great significance for daily management and fo...
The primary objective of this study is to predict the short-term metro passenger flow using the prop...
In recent years, the rapid economic development of China, the increase of the urban population, the ...
Short-term traffic demand prediction is one of the crucial issues in intelligent transport systems, ...
Crowd flow prediction is of great importance in a wide range of applications from urban planning, tr...
The last years have witnessed a significant growth of human mobility studies, motivated by their imp...